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Real time detection of farm-level swine mycobacteriosis outbreak using timeseries modeling of the number of condemned intestines in abattoirs

机译:使用时间实时检测农场水平的猪分枝杆菌病暴发屠宰场受死肠数量的系列建模

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摘要

Mycobacteriosis in swine is a common zoonosis found in abattoirs during meat inspections, and the veterinary authority is expected to inform the producer for corrective actions when an outbreak is detected. The expected value of the number of condemned carcasses due to mycobacteriosis therefore would be a useful threshold to detect an outbreak, and the present study aims to develop such an expected value through time series modeling. The model was developed using eight years of inspection data (2003 to 2010) obtained at 2 abattoirs of the Higashi-Mokoto Meat Inspection Center, Japan. The resulting model was validated by comparing the predicted time-dependent values for the subsequent 2 years with the actual data for 2 years between 2011 and 2012. For the modeling, at first, periodicities were checked using Fast Fourier Transformation, and the ensemble average profiles for weekly periodicities were calculated. An Auto-Regressive Integrated Moving Average (ARIMA) model was fitted to the residual of the ensemble average on the basis of minimum Akaike’s information criterion (AIC). The sum of the ARIMA model and the weekly ensemble average was regarded as the time-dependent expected value. During 2011 and 2012, the number of whole or partial condemned carcasses exceeded the 95% confidence interval of the predicted values 20 times. All of these events were associated with the slaughtering of pigs from three producers with the highest rate of condemnation due tomycobacteriosis.
机译:猪中的分枝杆菌病是在肉类检查过程中在屠宰场发现的常见人畜共患病,预计当发现疫情爆发时,兽医当局将通知生产者采取纠正措施。因此,分枝杆菌病引起的死尸数量的期望值将是检测暴发的有用阈值,并且本研究旨在通过时间序列建模来开发这样的期望值。该模型是根据在日本东牧古肉品检验中心的2个屠宰场获得的八年检验数据(2003年至2010年)开发的。通过将随后2年的预测时间相关值与2011年至2012年之间2年的实际数据进行比较,对生成的模型进行了验证。对于建模,首先,使用Fast Fourier Transformation和整体平均分布对周期性进行检查。计算每周的周期。在最小Akaike信息标准(AIC)的基础上,对整体平均的残差拟合了自动回归综合移动平均(ARIMA)模型。 ARIMA模型和每周合计平均值之和被视为与时间有关的期望值。在2011年和2012年期间,全部或部分死尸的数量超过了预测值的95%置信区间20倍。所有这些事件都与屠宰率最高的三个生产商的生猪有关。分枝杆菌病。

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